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用于衡量微观层面收入不平等的多变量小区域建模:来自印度定期劳动力调查的证据

Multivariate Small Area Modelling for Measuring Micro Level Earning Inequality: Evidence from Periodic Labour Force Survey of India.

作者信息

Guha Saurav, Chandra Hukum

机构信息

ICAR-Indian Agricultural Statistics Research Institute, Library Avenue, New Delhi, India.

出版信息

Soc Indic Res. 2022;162(2):643-663. doi: 10.1007/s11205-021-02857-7. Epub 2022 Jan 6.

Abstract

The economy of India is growing continuously with its gross domestic product increasing rapidly than most of the developing countries. Nonetheless an increase in national gross domestic product is not revealing the earning parity at micro level in the country. The earning inequality in a country like India has adversely obstructed under privileged in accessing basic needs such as health and education. The Periodic labour force survey (PLFS) conducted by the National Statistical Office of India generates estimates on earning status at state and national level for both rural and urban sectors separately. However, due to a small sample size problem that leads to high sampling variability, these surveys cannot be used directly to produce reliable estimates at micro level such as district or further disaggregate levels. As earnings are often unevenly distributed among the subgroups of comparatively small areas, disaggregate level statistics are inevitably needed in the country for target specific policy planning and monitoring to reduce the earning disparity. Nonetheless, owing to unavailability of estimates at district level, the analysis and spatial mapping related to earning inequality are limited to the national and state level. As a result, the existing variability in disaggregate level earning distribution are often unavailable. This article describes multivariate small area estimation (SAE) to generate precise and representative district-wise model-based estimates of inequality in earning distribution in rural and urban areas of Uttar Pradesh state in India by linking the latest round of PLFS 2018-2019 data and the 2011 Indian Population Census data. The diagnostic measures demonstrate that the district-wise estimates of earning generated by multivariate SAE method are reliable and representative. The spatial maps produced in this analysis reveal district level inequality in earning distribution in the state of Uttar Pradesh. These disaggregate level estimates and spatial mapping of earning distribution are directly pertinent to measuring and monitoring the sustainable development goal 10 of inequality reduction within countries. These expected to offer evidence to executive policy-makers and experts for recognizing the areas demanding additional consideration. This study will definitely provide added advantage to the newly launched schemes of Government of India for fund distribution along with the better monitoring of these schemes.

摘要

印度经济持续增长,其国内生产总值(GDP)的增长速度比大多数发展中国家都要快。尽管如此,国家GDP的增长并未反映出该国微观层面的收入均等情况。在印度这样的国家,收入不平等对弱势群体获取健康和教育等基本需求产生了不利阻碍。印度国家统计局开展的定期劳动力调查(PLFS)分别生成了农村和城市部门在邦和国家层面的收入状况估计值。然而,由于样本量小导致抽样变异性高,这些调查不能直接用于在地区或更细分层面生成可靠的微观层面估计值。由于收入在相对较小区域的子群体中往往分布不均,该国不可避免地需要细分层面的统计数据,以便进行针对性的政策规划和监测,以减少收入差距。尽管如此,由于缺乏地区层面的估计值,与收入不平等相关的分析和空间映射仅限于国家和邦层面。因此,细分层面收入分布的现有变异性往往无法获取。本文介绍了多元小区域估计(SAE)方法,通过将最新一轮的2018 - 2019年PLFS数据与2011年印度人口普查数据相链接,生成印度北方邦农村和城市地区收入分配不平等的精确且具有代表性的基于模型的地区层面估计值。诊断措施表明,多元SAE方法生成的地区层面收入估计值是可靠且具有代表性的。本分析生成的空间地图揭示了北方邦收入分布中的地区层面不平等情况。这些细分层面的估计值和收入分布的空间映射与衡量和监测各国减少不平等的可持续发展目标10直接相关。这些有望为执行政策制定者和专家提供证据,以识别需要额外关注的领域。本研究肯定会为印度政府新推出的资金分配计划提供额外优势,并更好地监测这些计划。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/088b/8731197/3c88b1bd2546/11205_2021_2857_Fig1_HTML.jpg

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